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Auxiliary two-filter particle smoothing for one generalized hidden Markov model

  • Yunqi Chen*
  • , Zhibin Yan
  • , Xing Zhang
  • *Corresponding author for this work
  • Southern University of Science and Technology
  • Harbin Institute of Technology
  • Guangxi University

Research output: Contribution to journalArticlepeer-review

Abstract

This paper develops two-filter particle smoothing (TFPS) algorithms for the nonlinear fixed-interval smoothing problem of one generalized hidden Markov model (GHMM), where the current observation depends not only on the current state, but also on one-step previous state. Firstly, by Bayesian approach, the two-filter smoothing (TFS) formula for GHMM is established to calculate smoothing densities. In this TFS formula, the backward information prediction density is generally not a density of the state. This results in a difficulty that the normal sequential Monte Carlo (SMC) sampling technique cannot be directly applied to design corresponding TFPS algorithms based on the TFS formula. To solve this difficulty, a generalized TFS formula for GHMM is then proposed by introducing a sequence of artificial densities. By combining this generalized TFS formula, SMC, and the auxiliary variable sampling technique, a basic auxiliary TFPS (ATFPS) algorithm with quadratic computational complexity is proposed, and a simplified ATFPS algorithm with linear computational complexity is further developed. Finally, the effectiveness and superiority of the two proposed ATFPS algorithms for GHMM are verified via simulation examples and real experimental data.

Original languageEnglish
Pages (from-to)266-280
Number of pages15
JournalISA Transactions
Volume149
DOIs
StatePublished - Jun 2024
Externally publishedYes

Keywords

  • Auxiliary variable sampling
  • Hidden Markov model
  • Particle smoothing
  • Sequential Monte Carlo
  • Two-filter smoothing

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